E-Jurnal Matematika (Nov 2014)

PENERAPAN METODE BOOTSTRAP RESIDUAL DALAM MENGATASI BIAS PADA PENDUGA PARAMETER ANALISIS REGRESI

  • NI MADE METTA ASTARI,
  • NI LUH PUTU SUCIPTAWATI,
  • I KOMANG GDE SUKARSA

DOI
https://doi.org/10.24843/MTK.2014.v03.i04.p075
Journal volume & issue
Vol. 3, no. 4
pp. 130 – 137

Abstract

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Statistical analysis which aims to analyze a linear relationship between the independent variable and the dependent variable is known as regression analysis. To estimate parameters in a regression analysis method commonly used is the Ordinary Least Square (OLS). But the assumption is often violated in the OLS, the assumption of normality due to one outlier. As a result of the presence of outliers is parameter estimators produced by the OLS will be biased. Bootstrap Residual is a bootstrap method that is applied to the residual resampling process. The results showed that the residual bootstrap method is only able to overcome the bias on the number of outliers 5% with 99% confidence intervals. The resulting parameters estimators approach the residual bootstrap values ??OLS initial allegations were also able to show that the bootstrap is an accurate prediction tool.

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